Forecasting the rates of future aftershocks of all generations is essential to develop better earthquake forecast models
Shyam Nandan, Guy Ouillon, Didier Sornette, Stefan Wiemer

TL;DR
This study introduces an advanced seismicity model, SVETAS, based on the ETAS framework, which significantly improves earthquake forecasting accuracy by accounting for spatial variability and future aftershock generations.
Contribution
The paper presents the SVETAS model, a novel spatially variable ETAS-based approach that outperforms existing models in earthquake forecasting using Californian data.
Findings
SVETAS model consistently outperforms other models in experiments.
Accounting for spatial variation improves forecast accuracy.
Forecasting future aftershocks of all generations enhances model performance.
Abstract
Currently, one of the best performing and most popular earthquake forecasting models rely on the working hypothesis that: "locations of past background earthquakes reveal the probable location of future seismicity". As an alternative, we present a class of smoothed seismicity models (SSMs) based on the principles of the Epidemic Type Aftershock Sequence (ETAS) model, which forecast the location, time and magnitude of all future earthquakes using the estimates of the background seismicity rate and the rates of future aftershocks of all generations. Using the Californian earthquake catalog, we formulate six controlled pseudo-prospective experiments with different combination of three target magnitude thresholds: 2.95, 3.95 or 4.95 and two forecasting time horizons: 1 or 5 year. In these experiments, we compare the performance of:(1) ETAS model with spatially homogenous parameters or GETAS…
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